Neuro Fuzzy Classification and Detection Technique for Bioinformatics Problems

M. Othman, Thomas Moh Shan Yau
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引用次数: 18

Abstract

Bioinformatics is an emerging science and technology which has lots of research potential in the future. It involves multi-interdisciplinary approaches such as mathematics, physics, computer science and engineering, biology, and behavioral science. Computers are used to gather, store, analyze as well as integration of patterns and biological data information which can then be applied to discover new useful diagnosis or information. In this study, the focus was directed to the classification or clustering techniques which can be applied in the bioinformatics fields based on the Sugeno type neuro fuzzy model or ANFIS (adaptive neuro fuzzy inference system). It is very important to identify new integration of classification or clustering algorithm especially in neuro fuzzy domain as compared to conventional or traditional method. This paper explores the suitability and performance of recurrent classification technique, fuzzy c means (FCM) act as classifier in neuro fuzzy system compared to subclustering method. A package of software based on neuro fuzzy model (ANFIS) has been developed using MATLAB software and optimization were done with the help from WEKA. A set diabetes data based on real diagnosis of patient was used
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生物信息学问题的神经模糊分类与检测技术
生物信息学是一门新兴的科学技术,具有广阔的研究前景。它涉及多学科交叉的方法,如数学、物理、计算机科学与工程、生物学和行为科学。计算机被用来收集、存储、分析以及整合模式和生物数据信息,然后可以应用于发现新的有用的诊断或信息。本研究的重点是基于Sugeno型神经模糊模型或自适应神经模糊推理系统(ANFIS)的分类或聚类技术,这些技术可以应用于生物信息学领域。与传统或传统的方法相比,识别新的分类或聚类集成算法,特别是在神经模糊领域,显得尤为重要。本文探讨了递归分类技术的适用性和性能,与子聚类方法相比,模糊c均值(FCM)作为神经模糊系统的分类器。利用MATLAB软件开发了一套基于神经模糊模型(ANFIS)的软件,并利用WEKA软件进行了优化。采用一组基于患者真实诊断的糖尿病数据
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